Project cooperationUpdated on 12 May 2026
AI-TYRE: AI-Based Early Anomaly Detection in Tire Testing
ICT Industrial, R&D & Quality Applications and MES CoE Unit Manager at PROMETEON TURKEY ENDUSTRIYEL VE TICARI LASTIKLER ANONIM SIRKETI
Kocaeli, Türkiye
About
•Aim
The project aims to develop an AI-based system for early anomaly detection in tyre testing environments. By leveraging real-time sensor data (temperature, pressure, load, speed, vibration, noise, thermal imaging, image processing), the system will detect anomalies that precede tire failures during the tests and provide early warnings. Secondly, it will show the exact point of the failure on the tyre.
•Innovation
The project introduces a novel integration of generative AI and time-series anomaly detection models (LSTM, Autoencoder) into high-speed tire testing environments. It combines real-time data acquisition with explainable AI to enhance safety and reliability.
•Technical Approach
The system will be trained on historical and real-time test data. It will be deployed in a test laboratory environment with sensor integration and real-time monitoring. The AI models will be validated through physical testing and simulation.
Similar opportunities
Project cooperation
Hakan Erdoğan
ICT Industrial, R&D & Quality Applications and MES CoE Unit Manager at PROMETEON TURKEY ENDUSTRIYEL VE TICARI LASTIKLER ANONIM SIRKETI
Kocaeli, Türkiye
Expertise
AI-Enabled Manufacturing Analytics and Operational Optimisation
BURCU MUSAOGLU
R&D and Innovation Manager at Siskon Endustriyel Otomasyon Sistemleri San. ve Tic. A.S.
Izmir, Türkiye
Expertise
Navigation systems, Kalman based SoC estimation.
Tolga Sönmez
Owner at NavAware
Ankara, Türkiye